渗透预处理洋葱干燥过程和质量参数的建模与优化

K. Alabi, A. Olaniyan, M. O. Sunmonu
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引用次数: 1

摘要

建模和优化是食品加工中干燥的一个重要方面,为质量预测提供了快速方便的手段。研究的重点是对渗透压预处理洋葱片的干燥速率、水分损失、固形物增加、维生素C、锰和铁等工艺参数进行建模和优化。数学实验室计算机软件中的最小二乘回归分析用于对工艺参数进行建模和优化。,为所进行的回归分析的每个输出开发了六(6)个数学模型。判断这些模型的标准是其调整后的多次测定系数、预测误差平方和(也称为删除残差)、预测R2、变异系数CV和自相关的Dubin-Watton检验的值。使用这些标准检查模型的充分性,并从其他可能的组合中选择那些被发现充分的模型。因此,从模型中获得的最佳优化结果分别为27.50 g/h、1.61 g/g、0.15 g/g、77.52 mg/100g、2.79 mg/1000g和2.19 mg/1000G的干燥速率、水分损失、固体增加、维生素C、锰和铁。
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Modelling and optimization of the drying process and the quality parameters of dried osmo-pretreated onions (Allium cepa)
Modelling and optimization represent an important aspect of drying in food processing, providing a fast and convenient means for quality prediction. The research focuses on modelling and optimization of process parameters such as drying rate, water loss, solid gain, vitamin C, manganese, and iron of dried osmo-pretreated onion slices. Least square regression analysis in the Math-lab computer software was used to model and optimise the process parameters., Six (6) mathematical models were developed for each output from the regression analysis that was carried out. The criteria for adjudging these models were the values of their adjusted coefficient of multiple determinations, prediction error sum of squares (also called deleted residual), R2 for prediction, coefficient of variation CV, and the Dubin-Watson test for autocorrelation. The models were checked for adequacy using these criteria, and those found to be adequate were selected from among the other possible combinations. Hence, the best-optimized obtained results from the models are 27.50 g/h, 1.61 g/g, 0.15 g/g, 77.52 mg/100 g, 2.79 mg/1000 g, and 2.19 mg/1000 g for drying rate, water loss, solid gain, vitamin C, manganese, and iron, respectively.
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发文量
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审稿时长
12 weeks
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